DAP4: Data Model

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Definitions

Cardinal Type
A data type that cannot be divided using the operators provided by DAP4. The set of Cardinal types are: Byte, Int16, Int32, Int64, their unsigned companions, Float32, Float64, String, URL. Enum (Enumerations) and Opaque.
Constructor Type
A data type used to build new structures for representing information. Constructor types gain flexibility by allowing instances of themselves to be elements in a constructed type (i.e., they support recursive definitions).I think this should be "nested definitions" not "recursive definitions" ndp 11:28, 16 February 2012 (PST) The Structure, Sequence and Grid are the Constructor types in DAP.
Aggregator Type
Arrays and type-homogeneous lists are aggregator types. DAP does not contain a List data type since lists can be represented by Sequences with a single element.
Variable-size Type
A data type that does not define a fixed number of bits/bytes for its network representation. Examples of these types are Strings, Opaques and Sequences. Note that an Array or Structure containing instances of Opaque defines a variable-size type while an Array or Structure that contains only, say, Int32 variables, defines a Fixed-size Type.
Fixed-size Type
A data type with a fixed size regardless of the value(s) contained.
Dimension
The term dimension is used in some places as a short form for Shared Dimension, defined below.
Shared Dimension
A Shared Dimension is the binding of a name to a integer. The name can then be used in place of the integer to indicate the extent of a variable with one or more dimensions. Using a Shared Dimension to describe the extent of two or more array variables describes the way that parts of the variables are related.
Independent Variable
A variable included in a data source which is manipulated during measurement or calculation. For example, a ship collecting information about sea temperature might conduct measurements at different latitude and longitudes - the variables used to hold those latitude and longitude values can be described as independent variables. The term has its origin in Mathematics and Statistics, each of which have subtly different definitions, but in the context of a data source the independent variables are often ones that might be encoded as attributes and not variables except for the fact that the values of an independent variable are often larger in volume (KB to MB) and users of the data often need to select a subset of the values, an operation that is often not supported for attributes.
Coordinate Variable
A Coordinate Variable is the binding of a Shared Dimension to a data type so that the values of an independent variable may be stored in a data source and their relation to a dependent variable made explicit. The Grid data type is used by DAP4 to define coordinate variables, which it names Maps.
Dependent Variable
A variable included in a data source which is measured or calculated as a function of independent variables. For example, if a data source held demographic information about cities' populations and median income levels, the data about income levels would be a dependent variable. As with the term independent variable, this term has its origin in Mathematics and statistics.

Data Model

DAP 2 Conceptual Data ModelDAP 4 Conceptual Data Model

DAP is evolving to meet the increasing complexity of data sources and the improving capabilities of analysis software to act as clients for various online data sources. Part of this evolution is to adopt the Common Data Model that has been developed by Unidata. Other changes are the introduction of new data types and the expansion of capabilities of the widely used 'Grid' type. The Grid type in DAP4 will allow for N-dimensional 'Maps,' multiple 'Array' components and Array components that do not use all of the Maps. Finally, some types like Array of Grid and Array of Sequence have been eliminated because they lack real use-cases and are hard to implement. By eliminating them we hope client authors will focus on complete implementations of the existing types.

The DAP 2 and DAP 4 logical data models are shown to the above, although some details, are skipped. The UML constraint shape indicates if something is an array - shape == 0 means the variable is a scalar while shape > 0 means it has one or more dimensions).

High resolution version of the DAP 2 Data Model High resolution version of the DAP 4 Data Model

Dataset

In DAP4, the Dataset object forms the root of the representation of a dataset. In DAP2, this task was split between two different objects, the DDS and DAS, which were also the names of objects used in many implementations. For DAP4, implementations could use the name Dataset. All of the information contained in the data model will be encoded in a 'Dataset response' although we might use the older name DDX in place of Dataset. In addition, some bookkeeping information might be added to the Dataset/DDX response.

The format(s) that the DAP4 responses can take on will be discussed elsewhere.

Data Types

DAP 4 will have a small increase in supported data types. All of the DAP 2 data types describe in ESE RFC 004.11 will be supported with the following exceptions:

  1. Byte will now indicate a signed 8-bit integer data type (so that UByte can be used to name an unsigned 8-bit integer in keeping with the pattern developed for the *Int?? types).
  2. Arrays of Grid and Sequence are explicitly excluded from DAP4.
  3. The Grid type will have some important limitations removed.
  4. The String type will hold character strings that comply with UTF-8.
  5. The URL type will comply with the forthcoming IRI RFC.

DAP4 will contain new datatypes that support 64-bit integers, an Opaque type that can be used for data objects like JPEG images, a Group type that can be used to build logical collections as in NetCDF4 or HDF5 (with some limitations over HDF5's definition of Group). In addition, DAP 4 will provide for shared Dimensions and type definitions.

New Datatypes

Groups

The Dataset object must contain one or more Group objects. Like Shared Dimensions and unlike the other types, Group provides a way to form logical associations of variables. Unlike Structure, it cannot itself be used as a component in a constructor type. For example, it is not possible to have an Array of Group while it is certainly possible to have an Array of Structure.

Group characteristics:

  1. The Group object is similar to the notion of a namespace in a programming languages.
  2. Each Group declares a new lexical scope for names.
  3. A Group can contain any object(s), including other Groups.
  4. All Groups must be named.
  5. All Groups may have shared Dimensions, which are limited in scope to the enclosing Group.
  6. All Groups may have DAP Attributes.
  7. At least one Group must be defined; if a dataset lacks a Group declaration, a Group called root will be defined and all of its variables will be added to that Group.
  8. A Group cannot be used with a constructor type.
  9. NB: This definition does not completely subsume the HDF5 Group type but is equivalent to the netCDF 4 version of it. This Group object defines a series of relationships that are purely hierarchical and not a generalized graph (as is the case with the HDF5 Group data model component). Note however, that the URL/IRI type can be used in one Group to reference variables and Dimensions (but not other Groups) defined in another Group.

Shared Dimensions

Shared Dimensions will be added to DAP in the dimensions section of Grid objects. Each shared dimension will consist of a name and a size.

Characteristics of Shared Dimensions:

  1. Shared Dimensions are not associated with a data type.
  2. Shared Dimensions do not have attributes.
  3. Every Shared Dimension has both a name and a size.
  4. Shared Dimensions are scoped to the Grid that contains them.
  5. Shared Dimensions are used to define a Map in a Grid.
  6. Shared Dimensions bind indices in a Map to indices in an Array, forming a linkage between the Array and Map values.

How Group and Dimension differ from other parts of the data model

Both Group and Dimension are used to provide syntactic or structural metadata about a dataset. They do not contain data values themselves. In many cases these objects will not be explicitly represented in the original dataset. Instead, their existence and value(s) will be inferred based on various standards and conventions. The other elements of the data model are used to house data values or semantic metadata read from the dataset (or, in the latter case) synthesized from the values and standards/conventions that the dataset is known to follow.

Opaque

The Opaque type is use to hold objects like JPEG images and other Binary Large Object (BLOB) data that have significant internal structure which might be understood by clients (e.g., an image display program) but that would be very cumbersome to describe using DAP's built-in types. Defining a variable of type 'Opaque' does not communicate any information about its content, although an attribute could be used to do that.

  1. A variable of type Opaque is treated as a Byte array for the purposes of transmission. This means there is no attempt to re-order four-byte words to or from network byte order and that the block of bytes is extended to fill a four-byte boundary
  2. The size of an Opaque variable is unknown until the data are read/received
  3. The Opaque type is a Cardinal Type, which might seem odd because instances of Opaque can be of different sizes. However, comparing similar aspects of Opaque and String indicate that they are Cardinal Types after all.
  4. NB: Cardinal Types can appear in Group, Array, Structure, Grid and Sequence parts of the data model.

64-bit Integers

Signed and Unsigned 64-bit integers.

Enumeration

When a data source has a variable of type 'Enumeration' a DAP 4 server MUST represent that variable using a integer type, up to an including a 64-bit unsigned integer. However, in practice, these should use Byte variables when transporting the values unless an enumeration contains values too large for that type. This is true because DAP4 will use XDR to encode responses and thus Arrays of Enumerations will encode directly to single byes. If we use other types, like Int16, then they will expand to be 32-bit integers. On the other hand, a single Enumeration will expand to a 32-bit integer for encoding by XDR, but that cost is fairly small.

Changes to Existing Types

Changes to index sizes

DAP4 will support Arrays and Grids with 64-bit unsigned indexes.

Signed Bytes

Byte will be a signed 8-bit integer and UByte will be an unsigned 8-bit integer. NB: In DAP2, the Byte data type is defined as an unsigned 8-bit integer and there is no signed 8-bit integer type.

Changes to the String Type

A String is a sequence of characters encoded using UTF-8. Servers MUST translate from local encoding to UTF-8 and client must translate received string data from UTF-8 to any local representation if is not UTF-8. In DAP2, strings were simple C-sytle strings using only ASCII characters.

Changes in the Definition of Grid

While dimensions are scoped at the Group level, coordinate variables are defined at the level of a Grid object.

  • General information about Grid:
  1. A Grid object is a relational type.
  2. Each Grid object defines a lexical scope.
  3. Each Grid has one or more Shared Dimensions that are used by its Array and Map components.
  4. Each Grid must have one or more Maps and one or more Arrays.
  5. Shared Dimensions provide the binding between Array (dependent) and Map (independent) values. The Map value at (i0, i1, ..., in) correlates with the Array value at the same indicial coordinates when both the Array and Map use the same shared dimensions for those indices.
  • Array:
  1. Each Grid object must hold one or more Array-type variables (what is often termed a dependent variable in scientific literature).
  2. An Array of rank N may have 1 ... N Maps
  • Map:
  1. Maps (often called independent variables) must have at least one dimension and may have more than one dimension
  2. Map objects are a restricted class of arrays; only Maps of Byte, ..., Enum are allowed.
  3. Despite the restriction, Maps may have DAP Attributes.
  4. Maps are required to use SharedDimension objects for all of their dimensions.

Examples:

A fairly complex Grid

This Grid has two arrays and three maps.

How the Maps and Arrays relate: For any (x,y) value of SST, the latitude and longitude that corresponds to that point can be found from the latitude and longitude MAPs using those same indices. The Grid indicates that by explicitly 'sharing the x and y dimensions with those Maps'. For the AirT array, the lat and lon of any (x,y,z) point can be found using (x,y) and the altitude of any point (x,y,z) can be found using the (x,y,z) value of the altitude Map. Again, the shared dimensions provide explicit bindings between the Array and Map values.

<Grid name="foo">
    <SharedDimension name="x" size="1024"/>
    <SharedDimension name="y" size="1024"/>
    <SharedDimension name="z" size="12"/>

    <!-- The dimensions of a Map MUST be SharedDimensions -->
    <Map name="longitude" type="Float32">
        <dimension ref="x"/>
        <dimension ref="y"/>
    </Map>

    <Map name="latitude" type="Float32">
        <dimension ref="x"/>
        <dimension ref="y"/>
    </Map>

    <Map name="altitude" type="Int32">
        <Attribute name="unit" type="String"><value>ft</value></Attribute>
        <dimension ref="x"/>
        <dimension ref="y"/>
        <dimension ref="z"/>
    </Map>

    <!-- The array SST has two dimensions (x by y) and is bound to the maps latitude and longitude.
        The maps provide values for the independent variables latitude, ...
        To find the value of an independent variable for SST at position x=a,y=b, use the indicial values
        a,b for the same (shared) dimensions in the corresponding map. -->
        
    <Byte name="SST">
        <dimension ref="x"/>
        <dimension ref="y"/>

        <map ref="latitude"/>
        <map ref="longitude"/>
    </Byte>

    <Int16 name="AirT">
        <dimension ref="x"/>
        <dimension ref="y"/>
        <dimension ref="z"/>

        <map ref="longitude">
        <map ref="latitude"/>
        <map ref="altitude"/>
    </Int16>
</Grid>

Types not Included

Discussed in this section are types that are present in some other systems (e.g., ASN 1.1) but that are not explicitly included in DAP 4. For all of these, the information they would encode should be included using attributes. This makes the information available in a way that clients can access if they choose and which people can easily understand without loading up the data model with complexity or optional features. While understanding and reading these attributes is optional for clients, it is required behaviour for conforming servers to encode this information as described here.

Date/Time

When a data source has a variable of type Date, Time or a type that combines those two, a DAP 4 server MUST represent that variable using the String type and include an attribute for that variable named DAP4_Date, DAP4_Time or DAP4_DateTime. The type of the attribute must be String and it must have only one value and that value must indicate how to interpret the date/time value(s) of the variable. As a special case, if the value is ISO-8601 then a client program can assume that the ISO 8601 standard for representation of dates and times is used.

Type definitions

Both HDF5 and NetCDF4 include this as a feature; it is of considerable value for an API that will be used to write data because it provides a way to make a template file with only the data type defined and then have people instantiate those types, resulting in much uniformity. For a data access system, which is read-only, there's less benefit and clients have to be more sophisticated.

DAP4 will not support type definitions (except for Enumerations and SharedDimensions). There is a down side to not supporting the feature, however, and that is that it becomes harder to faithfully represent what's in a data set.

Potential solution:

  1. Include type definitions in an attribute section - Dataset or Group scope - and then in every Structure that represents a collection of variables with a typedef in the source, include an attribute that names the typedef. This solution frees clients from having to interpret the typedef but savvy clients can reconstruct the original information if needed.

Attributes

In DAP4, Attributes (not to be confused with XML attributes) are tuples with four values:

  • Name
  • Type
  • Vector of values
  • Namespace

This differs slightly from DAP2 Attributes because the namespace feature has been added, but client can choose to ignore it. The intent of including the namespace information is to simplify interactions with semantic web applications where certain formats or standards have formal definitions of attributes (e.g., CF-1.x). A second difference is that DAP4 explicitly realizes that an attribute with one value is really an attribute whose value is a one-element vector.

Allowed attribute types

The following types are allowed for Attributes:

  • All of the Cardinal types except Opaque.
  • Arbitrary XML
  • Containers (i.e., Structures, but without the capability to be arrays)

As with the String variable type, String Attributes use UTF-8 encoding.

Arbitrary XML content

By supporting an explicit type to hold 'arbitrary XML' markup, DAP4 provides a way for the protocol to transport information encoded in XML along with the attributes read from the dataset itself. This has proved very useful in work with semantic web software.

In an XML representation of DAP4, the name is optional, the XML element is <OtherXML/> and there are no <value/> elements because the 'other xml' appears as the content of the <OtherXML/> element. The value of the attribute must be valid XML and must be distinct from the XML markup used to encode elements of the DAP4 data model (i.e., in a practical sense, the OtherXML must be in a namespace other than DAP4).

Names

Every object in a DAP4 Dataset has a Fully Qualified Name. These names follow the common conventions of lexically-scoped identifiers. To write FQNs, the component names are listed, left to right, corresponding to a traversal of the scopes from outermost to innermost, using dots (.) to separate names associated with lexical scopes. Cases where dots are used in names are accommodated by allowing the names to be quoted and quotes to be escaped using a backslash (\). The (unlikely) sequence "\'" can be represented using "\\'". That is, the backslash can itself be escaped although that is only needed if it is a literal and immediately precedes a literal single quote (').

Objects with FQNs

Each of these Types or Objects has a FQN and some (e.g., also define a lexical scope):

  • Group: A group defines a lexical scope
  • SharedDimension
  • Map (A Map is a restricted type of an Array)
  • Cardinal types
  • Arrays
  • Types that define lexical scopes:
    • Structure
    • Sequence
    • Grid

Constraint Expressions

In DAP4, Constraint Expressions define the set of operations that the server must support for each data type. These operations are how subsetting and sampling of data are specified and provide the mechanism by which clients indicate which data they want.

The Constraint Expression is encoded as a string and is sent to the server as part of a data request. It is described in the section on Requests and Responses.

Each Constraint Expression (CE) consists of two parts:

Projection
Zero or more projection clauses specify what variables are to be included in the response
Selection
Zero or more selection clauses are each evaluated for truth and used to determine which values are to be included for the variables named in the projection. The value (true or false) of the selection part is the logical AND of the clauses. Evaluators can stop processing the clauses when the first false value is found. There is no logical OR operation.

The Projection component of the CE is used to:

  • Chose which variables are to be retrieved from the dataset
  • Which parts of Arrays are to be retrieved, using a 'slicing' concept similar to Python or netCDF3/4 or HDF4/5.
  • Which fields of compound types are to be retrieved, using fully qualified names for the fields.
  • Call functions that return values
  • List several variables and/or functions to retrieve in one operation.

The Selection component of the CE is used to limit the data returned by value:

  • For and Cardinal type that is a member of a Sequence, return only those elements of the Sequence that satisfy a set of relational clauses
  • For Arrays, return only those elements that satisfy a set of relational clauses. The result of this is a Sequence with N+1 columns for a rank N array; one column for each dimension plus one for the value.
  • Functions can be used in place of relational operators

Differences between DAP2 and DAP4 Constraint Expressions

  1. DAP4 does not support applying array slicing to a Grid. Of course, fields/components of the Grid can be part of the Projection and, since those are arrays, the slicing operator can be used on them.
  2. Array values can be 'selected' in DAP4
  3. Functions may appear in both the projection and selection parts of the CE.
    1. Projection functions compute values that are returned
    2. Selection functions evaluate to true or false
    3. DAP2 supported a third kind of function that was used to add 'synthesized' variables to a dataset; those are not included in DAP4 since other techniques can be used to add new variables to a dataset.